import torch
import sys
import ast
import inspect
import string
from collections import namedtuple
from textwrap import dedent
from typing import List, Tuple  # noqa: F401
from torch._C._jit_tree_views import (
    ClassDef, Ident, Stmt, Decl, Def, Var,
    EmptyTypeAnnotation, Param, ExprStmt, Assign,
    Delete, Return, Raise, Assert, AugAssign, While,
    For, If, Pass, Break, Continue, Apply, Dots, Select,
    TrueLiteral, FalseLiteral, NoneLiteral, Starred,
    ListLiteral, TupleLiteral, DictLiteral, Const,
    StringLiteral, ListComp, Attribute, BinOp, UnaryOp,
    SliceExpr, Subscript, TernaryIf, With, WithItem, Property,
    DictComp,
)
from torch._sources import get_source_lines_and_file, parse_def, make_source_context
from torch.jit._monkeytype_config import monkeytype_trace, get_qualified_name
from torch._jit_internal import should_drop, is_static_fn, FunctionModifiers  # noqa: F401
import torch.jit.annotations

_IS_ASTUNPARSE_INSTALLED = False
try:
    import astunparse  # type: ignore[import]
    _IS_ASTUNPARSE_INSTALLED = True
except ImportError:
    pass

# Borrowed from cPython implementation
# https://github.com/python/cpython/blob/561612d8456cfab5672c9b445521113b847bd6b3/Lib/textwrap.py#L411#

_reserved_prefix = '__jit'
_reserved_names = {'print'}
_identifier_chars = set(string.ascii_lowercase + string.ascii_uppercase + string.digits)


def is_reserved_name(name):
    return name.startswith(_reserved_prefix) or name in _reserved_names


pretty_node_names = {
    ast.FunctionDef: "function definitions",
    ast.For: "for loops",
    ast.Delete: "del statements",
    ast.ClassDef: "class definitions",
    ast.With: "with statements",
    ast.Raise: "raise statements",
    ast.Assert: "assertions",
    ast.Import: "import statements",
    ast.ImportFrom: "import statements",
    ast.Global: "global variables",
    ast.Break: "break statements",
    ast.Continue: "continue statements",
}

node_start_tokens = {
    ast.FunctionDef: "def",
    ast.For: "for",
    ast.Delete: "del",
    ast.ClassDef: "class",
    ast.With: "with",
    ast.Raise: "raise",
    ast.Assert: "assert",
    ast.Import: "import",
    ast.ImportFrom: "from",
    ast.Global: "global",
    ast.Break: "break",
    ast.Continue: "continue",
}

pretty_node_names.update({
    ast.AsyncFunctionDef: "async function definitions",
    ast.AsyncFor: "async for loops",
    ast.AsyncWith: "async with statements",
    ast.Try: "try blocks",
    ast.Nonlocal: "nonlocal variables",
})

node_start_tokens.update({
    ast.AsyncFunctionDef: "async def",
    ast.AsyncFor: "async for",
    ast.AsyncWith: "async with",
    ast.Try: "try",
    ast.Nonlocal: "nonlocal",
})

if sys.version_info >= (3, 6):
    pretty_node_names.update({
        ast.AnnAssign: "annotated assignments",
    })
    # NB: no specific token for AnnAssign


class FrontendError(Exception):
    def __init__(self, source_range, msg):
        self.source_range = source_range
        self.msg = msg

        # This has to be instantiated here so the ErrorReport is accurate to the
        # call stack when the FrontendError was raised
        self.error_report = torch._C.ErrorReport(self.source_range)

    def __str__(self):
        return self.msg + self.error_report.what().lstrip()


class NotSupportedError(FrontendError):
    pass


class UnsupportedNodeError(NotSupportedError):
    def __init__(self, ctx, offending_node, reason=''):
        # If we don't have a specific token, we default to length of 1
        node_type = type(offending_node)
        range_len = len(node_start_tokens.get(node_type, ' '))
        source_range = ctx.make_range(offending_node.lineno,
                                      offending_node.col_offset,
                                      offending_node.col_offset + range_len)
        feature_name = pretty_node_names.get(node_type, node_type.__name__)
        msg = "{} {}aren't supported".format(feature_name, reason + ' ' if reason else '')
        super(UnsupportedNodeError, self).__init__(source_range, msg)


class FrontendTypeError(FrontendError):
    pass


def build_withitems(ctx, items):
    items = [build_withitem(ctx, i) for i in items]
    return list(items)


def build_stmts(ctx, stmts):
    stmts = [build_stmt(ctx, s) for s in stmts]
    return list(filter(None, stmts))


def get_class_properties(cls, self_name):
    """
    Get a list of Property objects representing the properties of a class.

    Args:
        cls:  The class to get properties of.
        self_name: The name of the class that the properties should belong to.
    Returns:
        A list of Property objects corresponding to the properties of cls. Property
        here refers to the subclass of TreeView.
    """
    props = inspect.getmembers(
        cls, predicate=lambda m: isinstance(m, property))
    # Any property that should not compiled must be in this list on the Module.
    unused_properties = getattr(cls, "__jit_unused_properties__", [])

    # Create Property TreeView objects from inspected property objects.
    properties = []
    for prop in props:
        if prop[0] not in unused_properties and not should_drop(prop[1].fget):
            getter = get_jit_def(prop[1].fget, f"__{prop[0]}_getter", self_name=self_name)
            setter = get_jit_def(prop[1].fset, f"__{prop[0]}_setter", self_name=self_name) if prop[1].fset else None
            properties.append(Property(getter.range(), Ident(getter.range(), prop[0]), getter, setter))

    return properties


def get_class_assigns(ctx, cls_ast):
    assigns = []

    def maybe_build_assign(builder, entry):
        nonlocal assigns
        try:
            assigns.append(builder(ctx, entry))
        except NotSupportedError:
            pass
    for entry in cls_ast.body:
        if isinstance(entry, ast.Assign):
            maybe_build_assign(StmtBuilder.build_Assign, entry)
        elif isinstance(entry, ast.AnnAssign):
            maybe_build_assign(StmtBuilder.build_AnnAssign, entry)
    return assigns


def get_jit_class_def(cls, self_name):
    # Get defs for each method within the current class independently
    # TODO: proper overriding analysis when implementing class inheritance
    methods = inspect.getmembers(
        cls,
        predicate=lambda m: (inspect.ismethod(m) or inspect.isfunction(m))
        and not is_static_fn(cls, m.__name__)
        and m.__name__ in cls.__dict__
    )

    def is_classmethod(fn):
        return inspect.ismethod(fn) and getattr(fn, "__self__", None) == cls

    methods = [get_jit_def(obj,
                           name,
                           self_name=self_name,
                           is_classmethod=is_classmethod(obj)) for (name, obj) in methods]

    properties = get_class_properties(cls, self_name)

    sourcelines, file_lineno, filename = get_source_lines_and_file(cls, torch._C.ErrorReport.call_stack())
    source = ''.join(sourcelines)
    dedent_src = dedent(source)
    py_ast = ast.parse(dedent_src)
    leading_whitespace_len = len(source.split('\n', 1)[0]) - len(dedent_src.split('\n', 1)[0])
    ctx = make_source_context(source, filename, file_lineno, leading_whitespace_len, False)
    class_ast = py_ast.body[0]
    assert isinstance(class_ast, ast.ClassDef)
    assigns = get_class_assigns(ctx, class_ast)

    return build_class_def(ctx, class_ast, methods, properties, self_name, assigns)


def get_jit_def(fn, def_name, self_name=None, is_classmethod=False):
    """
    Build a JIT AST (TreeView) from the given function.

    Args:
        fn: A function object to compile
        def_name: The name to give to the resulting AST object. This is not
            always the same as `fn.__name__`, for example:
                def _forward(self):
                    ...
                forward = _forward
            In this case, the `__name__` attribute of the function object is "_forward",
            but we want the result AST to have the name "forward".
        self_name: If this function is a method, what the type name of `self` is.
    """
    parsed_def = parse_def(fn)
    type_line = torch.jit.annotations.get_type_line(parsed_def.source)
    fn_def = parsed_def.ast.body[0]

    if is_classmethod:
        arg_name = fn_def.args.args[0].arg
        # Insert a statement that assigns the first argument to the class
        assign_stmt = ast.parse(f"{arg_name} = {self_name}").body[0]
        fn_def.body.insert(0, assign_stmt)

    # Swap out the function signature and body if it is unused
    if should_drop(fn):
        unused_fn_def = ast.parse("def unused_fn(self: Any):\n\traise RuntimeError(\"Cannot call @unused methods\")")
        if len(unused_fn_def.body) != 1 or not isinstance(unused_fn_def.body[0], ast.FunctionDef):
            raise RuntimeError(f"Expected a single top-level function: {parsed_def.filename}:{parsed_def.file_lineno}")
        unused_def = unused_fn_def.body[0]
        fn_def.body = unused_def.body
        # kwarg/vararg not supported by `build_def`
        fn_def.args.kwarg = fn_def.args.vararg = None
        for arg in fn_def.args.args + fn_def.args.kwonlyargs:
            # Replace potentially unsupported type annotations by "Any"
            arg.annotation = unused_def.args.args[0].annotation

    # If MonkeyType is installed, get all the consolidated type traces
    # for the arguments from type_trace_db
    type_trace_db = torch.jit._script._get_type_trace_db()
    pdt_arg_types = None
    if monkeytype_trace:
        qualname = get_qualified_name(fn)
        pdt_arg_types = type_trace_db.get_args_types(qualname)

    return build_def(parsed_def.ctx, fn_def, type_line, def_name, self_name=self_name, pdt_arg_types=pdt_arg_types)

# TODO: more robust handling of recognizing ignore context manager
def is_torch_jit_ignore_context_manager(stmt):
    # checks if the statement is torch.jit.ignore context manager
    if isinstance(stmt.items[0].context_expr, ast.Call):
        # extract torch part
        function = stmt.items[0].context_expr.func
        if isinstance(function, ast.Attribute):
            attr_name = function.attr
            attr_value = function.value
            if attr_name == "_IgnoreContextManager" and isinstance(attr_value, ast.Attribute):
                # there should be at most two nested attributes (e.g torch.jit._IgnoreContextManager)
                if attr_value.attr == "jit" and isinstance(attr_value.value, ast.Name):
                    if attr_value.value.id == "torch":
                        return True
    return False

class Builder(object):
    def __call__(self, ctx, node):
        method = getattr(self, 'build_' + node.__class__.__name__, None)
        if method is None:
            raise UnsupportedNodeError(ctx, node)
        return method(ctx, node)


def build_class_def(ctx, py_def, methods, properties, self_name, assigns):
    r = ctx.make_range(py_def.lineno, py_def.col_offset,
                       py_def.col_offset + len("class"))
    return ClassDef(Ident(r, self_name), [Stmt(method) for method in methods], properties, assigns)


def build_def(ctx, py_def, type_line, def_name, self_name=None, pdt_arg_types=None):
    body = py_def.body
    r = ctx.make_range(py_def.lineno + len(py_def.decorator_list),
                       py_def.col_offset,
                       py_def.col_offset + len("def"))

    param_list = build_param_list(ctx, py_def.args, self_name, pdt_arg_types)
    return_type = None
    if getattr(py_def, 'returns', None) is not None:
        return_type = build_expr(ctx, py_def.returns)

    decl = Decl(r, param_list, return_type)
    is_method = self_name is not None
    if type_line is not None:
        type_comment_decl = torch._C.parse_type_comment(type_line)
        decl = torch._C.merge_type_from_type_comment(decl, type_comment_decl, is_method)

    return Def(Ident(r, def_name),
               decl,
               build_stmts(ctx, body))


_vararg_kwarg_err = ("Compiled functions can't take variable number of arguments "
                     "or use keyword-only arguments with defaults")


def build_param_list(ctx, py_args, self_name, pdt_arg_types=None):
    if py_args.kwarg is not None:
        expr = py_args.kwarg
        ctx_range = ctx.make_range(expr.lineno, expr.col_offset - 1, expr.col_offset + len(expr.arg))
        raise NotSupportedError(ctx_range, _vararg_kwarg_err)
    if py_args.vararg is not None:
        expr = py_args.vararg
        ctx_range = ctx.make_range(expr.lineno, expr.col_offset - 1, expr.col_offset + len(expr.arg))
        raise NotSupportedError(ctx_range, _vararg_kwarg_err)
    if len(py_args.kw_defaults) > 0:
        # kw_defaults is a list of the values for the kwargs (which default to None),
        # so they don't actually have line numbers.
        for arg in py_args.kw_defaults:
            if arg is not None:
                ctx_range = build_expr(ctx, arg).range()
                raise NotSupportedError(ctx_range, _vararg_kwarg_err)

    # List of Tuple of args and type as inferred by profile directed typing
    arg_and_types = [(arg, pdt_arg_types[arg.arg] if pdt_arg_types and bool(pdt_arg_types[arg.arg]) else None)
                     for arg in py_args.args]
    arg_and_types_kwonlyargs = [(arg, pdt_arg_types[arg.arg] if pdt_arg_types and bool(pdt_arg_types[arg.arg])
                                else None) for arg in py_args.kwonlyargs]

    result = [build_param(ctx, arg, self_name, kwarg_only=False, pdt_arg_type=arg_type)
              for arg, arg_type in arg_and_types]
    result += [build_param(ctx, arg, self_name, kwarg_only=True, pdt_arg_type=arg_type)
               for arg, arg_type in arg_and_types_kwonlyargs]
    return result


def build_param(ctx, py_arg, self_name, kwarg_only, pdt_arg_type=None):
    # NB: In Python3 py_arg is a pair of (str arg, expr? annotation)
    name = py_arg.arg
    r = ctx.make_range(py_arg.lineno, py_arg.col_offset, py_arg.col_offset + len(name))
    if getattr(py_arg, 'annotation', None) is not None:
        annotation_expr = build_expr(ctx, py_arg.annotation)
    elif pdt_arg_type:
        annotation_expr = Var(Ident(r, pdt_arg_type))
    elif self_name is not None and name == 'self':
        annotation_expr = Var(Ident(r, self_name))
    else:
        annotation_expr = EmptyTypeAnnotation(r)
    return Param(annotation_expr, Ident(r, name), kwarg_only)

def build_ignore_context_manager(ctx, stmt):
    InputType = namedtuple('InputType', ['name', 'ann'])
    OutputType = namedtuple('OutputType', ['name', 'ann'])

    def process_ins_outs(args):
        # parse the context manager to figure out inputs and outputs
        # with their annotated types
        # TODO: add input, output validator
        inputs = []
        outputs = []
        for arg in args:
            var_name = arg.arg
            if sys.version_info < (3, 8):
                # Starting python3.8 ast.Str is deprecated
                var_ann = arg.value.s
            else:
                var_ann = arg.value.value
            var_decl_type, var_ann = var_ann.split(":")
            if var_decl_type == "inp":
                inputs.append(InputType(var_name, var_ann))
            if var_decl_type == "out":
                outputs.append(OutputType(var_name, var_ann))
        return inputs, outputs

    def create_unique_name_ext(ctx, stmt):
        # extension will be based on the full path filename plus
        # the line number of original context manager
        return ctx.filename.replace(".", "_").replace("/", "_") + "_" + str(stmt.lineno)

    def build_return_ann_stmt(outputs):
        return_type_ann = ""
        return_statement_str = "return "
        if len(outputs) == 0:
            return_type_ann += " -> None"
        if len(outputs) == 1:
            return_type_ann = " -> " + outputs[0].ann
            return_statement_str += outputs[0].name
        if len(outputs) > 1:
            return_type_ann = " -> Tuple"
            return_type_ann += "[" + ", ".join([var.ann for var in outputs]) + "]"
            return_statement_str += ", ".join([var.name for var in outputs])
        return return_type_ann, return_statement_str

    def build_args(args):
        return ", ".join([arg.name for arg in args])

    inputs, outputs = process_ins_outs(stmt.items[0].context_expr.keywords)

    # build the replacement function str with given inputs and outputs
    ignore_function_name = "func_ignore_" + create_unique_name_ext(ctx, stmt)
    ignore_function_str = "\ndef " + ignore_function_name
    ignore_function_str += "(" + ", ".join([var.name + " :" + var.ann for var in inputs]) + ")"

    return_ann, return_stmt = build_return_ann_stmt(outputs)
    ignore_function_str += return_ann + ": pass"

    # first create the functionDef object from just declaration
    ignore_function = ast.parse(ignore_function_str).body[0]

    # dump the body of context manager to dummy function
    ignore_function.body = stmt.body  # type: ignore[attr-defined]

    # insert return statement to the function
    return_stmt = ast.parse(return_stmt).body[0]
    ignore_function.body.append(return_stmt)  # type: ignore[attr-defined]

    # registers the custom function in the global context
    ignore_func_str = "@torch.jit.ignore\n" + astunparse.unparse(ignore_function)
    ignore_func_str += "\nglobals()[\"{}\"] = {}".format(ignore_function_name, ignore_function_name)
    exec(ignore_func_str)  # noqa: P204

    # build the statements as:
    # <out_1>, <out_2>, ... = torch.jit.frontend.<func>(<in_1>, <in_2>)
    assign_str_lhs = build_args(outputs)
    # this function will be registered in torch.jit.frontend module by default
    assign_str_rhs = "torch.jit.frontend.{}(".format(ignore_function_name) + build_args(inputs) + ")"

    if len(outputs) > 0:
        assign_str = assign_str_lhs + " = " + assign_str_rhs
    else:
        assign_str = assign_str_rhs
    assign_ast = ast.parse(assign_str).body[0]
    return assign_ast

def get_default_args(fn):
    if fn is None:
        return {}

    signature = inspect.signature(fn)

    return {
        k: v.default
        for k, v in signature.parameters.items()
        if v.default is not inspect.Parameter.empty
    }


def get_default_args_for_class(cls):
    """
    Get default arguments for all methods in a class (except for static methods).

    Args:
        cls: type - The class type to inspect for default arguments.
    Returns:
        A Dict[str, Dict[str, Any]] which maps each method name to a Dict[str, Any]
        that maps each argument name to its default value.
    """
    # Get methods (except static methods because those are compiled separately as
    # if they were independent script functions).
    methods = inspect.getmembers(
        cls,
        predicate=lambda m: (inspect.ismethod(m) or inspect.isfunction(m))
        and not is_static_fn(cls, m.__name__)
        and m.__name__ in cls.__dict__
    )

    # Get method defaults. Property defaults do not need to be considered
    # because setters cannot be invoked without a value.
    defaults = {method_name: get_default_args(method_impl) for method_name, method_impl in methods}

    return defaults


class WithItemBuilder(Builder):
    @staticmethod
    def build_withitem(ctx, item):
        lineno = item.context_expr.lineno
        start = item.context_expr.col_offset
        end = start + len(pretty_node_names[ast.With])
        op_vars = item.optional_vars
        r = ctx.make_range(lineno, start, end)

        return WithItem(r, build_expr(ctx, item.context_expr), build_expr(ctx, op_vars) if op_vars else None)


class StmtBuilder(Builder):
    augassign_map = {
        ast.Add: '+',
        ast.Sub: '-',
        ast.Mult: '*',
        ast.Div: '/',
        ast.Mod: '%',
        ast.BitOr: '|',
        ast.BitAnd: '&',
        ast.BitXor: '^',
        ast.LShift: '<<',
        ast.RShift: '>>',
        ast.Pow: '**',
    }

    @staticmethod
    def build_Expr(ctx, stmt):
        value = stmt.value
        if value.__class__.__name__ == 'Str':
            # If a statement is a string literal expression,
            # then it is a docstring. Just ignore it.
            return None
        else:
            return ExprStmt(build_expr(ctx, value))

    @staticmethod
    def build_Assign(ctx, stmt):
        rhs = build_expr(ctx, stmt.value)
        lhs = [build_expr(ctx, x) for x in stmt.targets]
        return Assign(lhs, rhs)

    @staticmethod
    def build_AnnAssign(ctx, stmt):
        if stmt.value is None:
            raise UnsupportedNodeError(ctx, stmt, reason='without assigned value')
        rhs = build_expr(ctx, stmt.value)
        lhs = build_expr(ctx, stmt.target)
        the_type = build_expr(ctx, stmt.annotation)
        return Assign([lhs], rhs, the_type)

    @staticmethod
    def build_Delete(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("del"))

        return Delete(r, [build_expr(ctx, target) for target in stmt.targets])

    @staticmethod
    def build_Return(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("return"))
        return Return(r, None if stmt.value is None else build_expr(ctx, stmt.value))

    @staticmethod
    def build_Raise(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("raise"))
        expr = build_expr(ctx, stmt.exc)
        return Raise(r, expr)

    @staticmethod
    def build_Assert(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("assert"))
        test = build_expr(ctx, stmt.test)
        msg = build_expr(ctx, stmt.msg) if stmt.msg is not None else None
        return Assert(r, test, msg)

    @staticmethod
    def build_AugAssign(ctx, stmt):
        lhs = build_expr(ctx, stmt.target)
        rhs = build_expr(ctx, stmt.value)
        op = type(stmt.op)
        if op in StmtBuilder.augassign_map:
            op_token = StmtBuilder.augassign_map[op]
        else:
            raise NotSupportedError(
                find_before(ctx, rhs.range().start, '=', offsets=(-1, 0)),
                "unsupported kind of augumented assignment: " + op.__name__)
        return AugAssign(lhs, op_token, rhs)

    @staticmethod
    def build_While(ctx, stmt):
        if stmt.orelse:
            # TODO: try to recover the location of else:? Python doesn't give us useful
            # annotations in this case
            raise NotSupportedError(None, "else branches of while loops aren't supported")
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("while"))
        return While(r, build_expr(ctx, stmt.test),
                     build_stmts(ctx, stmt.body))

    @staticmethod
    def build_For(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("for"))
        if stmt.orelse:
            raise NotSupportedError(r, "else branches of for loops aren't supported")

        return For(
            r, [build_expr(ctx, stmt.target)],
            [build_expr(ctx, stmt.iter)], build_stmts(ctx, stmt.body))

    @staticmethod
    def build_If(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("if"))
        return If(r, build_expr(ctx, stmt.test),
                  build_stmts(ctx, stmt.body),
                  build_stmts(ctx, stmt.orelse))

    @staticmethod
    def build_Print(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("print"))
        if stmt.dest:
            raise NotSupportedError(r, "print statements with non-default destinations aren't supported")
        args = [build_expr(ctx, val) for val in stmt.values]
        return ExprStmt(Apply(Var(Ident(r, "print")), args, []))

    @staticmethod
    def build_Pass(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("pass"))
        return Pass(r)

    @staticmethod
    def build_Break(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("break"))
        return Break(r)

    @staticmethod
    def build_Continue(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("continue"))
        return Continue(r)

    @staticmethod
    def build_With(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset + len("with"))
        # Handle ignore context manager
        if is_torch_jit_ignore_context_manager(stmt):
            if not _IS_ASTUNPARSE_INSTALLED:
                raise RuntimeError("torch.jit._IgnoreContextManager requires installing Python library `astunparse`,\
                                   please install it in your Python environment")
            assign_ast = build_ignore_context_manager(ctx, stmt)
            return build_stmt(ctx, assign_ast)
        return With(r, build_withitems(ctx, stmt.items), build_stmts(ctx, stmt.body))

class ExprBuilder(Builder):
    binop_map = {
        ast.Add: '+',
        ast.Sub: '-',
        ast.Mult: '*',
        ast.Div: '/',
        ast.Pow: '**',
        ast.Mod: '%',
        ast.FloorDiv: '//',
        ast.BitAnd: '&',
        ast.BitXor: '^',
        ast.BitOr: '|',
        ast.LShift: '<<',
        ast.RShift: '>>',
    }

    binop_map[ast.MatMult] = '@'

    unop_map = {
        ast.Not: 'not',
        ast.USub: '-',
        ast.Invert: '~',
    }

    boolop_map = {
        ast.And: 'and',
        ast.Or: 'or',
    }

    cmpop_map = {
        ast.Eq: '==',
        ast.NotEq: '!=',
        ast.LtE: '<=',
        ast.Lt: '<',
        ast.GtE: '>=',
        ast.Gt: '>',
        ast.Is: 'is',
        ast.IsNot: 'is not',
        ast.In: 'in',
        ast.NotIn: 'not in',
    }

    @staticmethod
    def build_Attribute(ctx, expr):
        base = build_expr(ctx, expr.value)
        # expr.attr is just a string, so it's not annotated in any way, so we have
        # to build the range manually
        source = ctx.source.encode('utf-8')

        def get_char(index):
            return chr(source[index])

        start_pos = base.range().end + 1
        while get_char(start_pos) in string.whitespace:  # Skip whitespace
            start_pos += 1
        end_pos = start_pos + len(expr.attr)
        name_range = ctx.make_raw_range(start_pos, end_pos)
        return Select(base, Ident(name_range, expr.attr))

    @staticmethod
    def build_Call(ctx, expr):
        func = build_expr(ctx, expr.func)
        args = [build_expr(ctx, py_arg) for py_arg in expr.args]
        if hasattr(expr, 'starargs') and expr.starargs:
            stararg_expr = build_expr(ctx, expr.starargs)
            args += [Starred(stararg_expr.range(), stararg_expr)]
        kwargs = []
        for kw in expr.keywords:
            kw_expr = build_expr(ctx, kw.value)
            # XXX: we could do a better job at figuring out the range for the name here
            if not kw.arg:
                raise NotSupportedError(kw_expr.range(), 'keyword-arg expansion is not supported')
            kwargs.append(Attribute(Ident(kw_expr.range(), kw.arg), kw_expr))
        return Apply(func, args, kwargs)

    @staticmethod
    def build_Ellipsis(ctx, expr):
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 3)  # len("...") == 3
        return Dots(r)

    @staticmethod
    def build_Name(ctx, expr):
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(expr.id))
        if expr.id.startswith(_reserved_prefix):
            raise NotSupportedError(r, "names of variables used in JIT-ed functions "
                                       "can't start with " + _reserved_prefix)
        if expr.id == "True":
            return TrueLiteral(r)
        elif expr.id == "False":
            return FalseLiteral(r)
        elif expr.id == "None":
            return NoneLiteral(r)
        elif expr.id == "Ellipsis":
            return Dots(r)
        return Var(Ident(r, expr.id))

    @staticmethod
    def build_NameConstant(ctx, expr):
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(str(expr.value)))
        if expr.value is True:
            return TrueLiteral(r)
        elif expr.value is False:
            return FalseLiteral(r)
        elif expr.value is None:
            return NoneLiteral(r)
        elif expr.value == Ellipsis:
            return Dots(r)
        else:
            raise ValueError("Name constant value unsupported: " + str(expr.value))

    @staticmethod
    def build_BinOp(ctx, expr):
        lhs = build_expr(ctx, expr.left)
        rhs = build_expr(ctx, expr.right)
        op = type(expr.op)

        if op == ast.Div and not ctx.uses_true_division:
            err_range = ctx.make_raw_range(lhs.range().end, rhs.range().start)
            raise FrontendError(err_range, 'Division of ints in TorchScript uses Python 3 true '
                                'division semantics. Please put `from __future__ '
                                'import division` at the top of your file')
        op_token = ExprBuilder.binop_map.get(op)
        if op_token is None:
            err_range = ctx.make_raw_range(lhs.range().end, rhs.range().start)
            raise NotSupportedError(err_range, "unsupported binary operator: " + op.__name__)
        return BinOp(op_token, lhs, rhs)

    @staticmethod
    def build_UnaryOp(ctx, expr):
        sub_expr = build_expr(ctx, expr.operand)
        op = type(expr.op)
        op_token = ExprBuilder.unop_map.get(op)
        if op_token is None:
            raise NotSupportedError(expr.range(), "unsupported unary operator: " + op.__name__)
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(op_token))
        return UnaryOp(r, op_token, sub_expr)

    @staticmethod
    def build_BoolOp(ctx, expr):
        if len(expr.values) < 2:
            raise AssertionError("expected at least 2 values in BoolOp, but got " + str(len(expr.values)))
        sub_exprs = [build_expr(ctx, sub_expr) for sub_expr in expr.values]
        op = type(expr.op)
        op_token = ExprBuilder.boolop_map.get(op)
        if op_token is None:
            err_range = ctx.make_raw_range(sub_exprs[0].range().end, sub_exprs[1].range().start)
            raise NotSupportedError(err_range, "unsupported boolean operator: " + op.__name__)
        lhs = sub_exprs[0]
        for rhs in sub_exprs[1:]:
            lhs = BinOp(op_token, lhs, rhs)
        return lhs

    @staticmethod
    def build_IfExp(ctx, expr):
        return TernaryIf(build_expr(ctx, expr.test),
                         build_expr(ctx, expr.body),
                         build_expr(ctx, expr.orelse))

    @staticmethod
    def build_Compare(ctx, expr):
        operands = [build_expr(ctx, e) for e in [expr.left] + list(expr.comparators)]
        result = None
        for lhs, op_, rhs in zip(operands, expr.ops, operands[1:]):
            op = type(op_)
            op_token = ExprBuilder.cmpop_map.get(op)
            r = ctx.make_raw_range(lhs.range().end, rhs.range().start)
            if op_token is None:
                raise NotSupportedError(r, "unsupported comparison operator: " + op.__name__)

            if op == ast.NotIn:
                # NB: `not in` is just `not( in )`, so we don't introduce new tree view
                # but just make it a nested call in our tree view structure
                in_expr = BinOp('in', lhs, rhs)
                cmp_expr = UnaryOp(r, 'not', in_expr)
            else:
                cmp_expr = BinOp(op_token, lhs, rhs)

            if result is None:
                result = cmp_expr
            else:
                result = BinOp('and', result, cmp_expr)
        return result

    @staticmethod
    def build_Subscript(ctx, expr):
        def build_SliceExpr(ctx, base, slice_expr):
            lower = build_expr(ctx, slice_expr.lower) if slice_expr.lower is not None else None
            upper = build_expr(ctx, slice_expr.upper) if slice_expr.upper is not None else None
            step = build_expr(ctx, slice_expr.step) if slice_expr.step is not None else None
            return SliceExpr(base.range(), lower, upper, step)

        def build_Index(ctx, base, index_expr):
            if isinstance(index_expr.value, ast.Tuple):
                raise NotSupportedError(base.range(),
                                        "slicing multiple dimensions with "
                                        "tuples not supported yet")
            return build_expr(ctx, index_expr.value)

        def build_ExtSlice(ctx, base, extslice):
            sub_exprs = []
            for expr in extslice.dims:
                sub_type = type(expr)
                if sub_type is ast.Index:
                    sub_exprs.append(build_Index(ctx, base, expr))
                elif sub_type is ast.Slice:
                    sub_exprs.append(build_SliceExpr(ctx, base, expr))
                elif sub_type is ast.Ellipsis:
                    sub_exprs.append(Dots(base.range()))
                else:
                    raise NotSupportedError(base.range(),
                                            "slicing multiple dimensions with "
                                            "{} not supported".format(sub_type))
            return sub_exprs
        base = build_expr(ctx, expr.value)
        sub_type = type(expr.slice)
        if sub_type is ast.Index:
            if isinstance(expr.slice.value, ast.Tuple):
                # N-dimensional indexing using Tuple: x[(i, j, k)] is equivalent to x[i, j, k]
                # XXX: Indexing using a list is **different**! It triggers advanced indexing.
                indices = [build_expr(ctx, index_expr) for index_expr in expr.slice.value.elts]
                if not indices:
                    # `col_offset` is an int, but `end_col_offset` is
                    # `Optional[int]`. The magic number is here to make
                    # sure we can parse `()` on any machine
                    r = ctx.make_range(expr.lineno,
                                       expr.slice.value.col_offset,
                                       expr.slice.value.col_offset + 2)
                    tup = TupleLiteral(r, [])
                    indices.append(tup)
                return Subscript(base, indices)
            else:
                return Subscript(base, [build_expr(ctx, expr.slice.value)])
        elif sub_type is ast.Slice:
            return Subscript(base, [build_SliceExpr(ctx, base, expr.slice)])
        elif sub_type is ast.ExtSlice:
            return Subscript(base, build_ExtSlice(ctx, base, expr.slice))
        elif sys.version_info >= (3, 9):  # In Python3.9 array indicies are not wrapped in ast.Index
            if sub_type is ast.Tuple:
                # N-dimensional indexing using Tuple: x[(i, j, k)] is equivalent to x[i, j, k]
                indices = []
                for index_expr in expr.slice.elts:
                    if isinstance(index_expr, ast.Slice):
                        indices.append(build_SliceExpr(ctx, base, index_expr))
                    else:
                        indices.append(build_expr(ctx, index_expr))
                # Special-case logic for `typing.Tuple[()]`
                if not indices:
                    # See note above r.e. magic number
                    r = ctx.make_range(expr.lineno,
                                       expr.slice.col_offset,
                                       expr.slice.col_offset + 2)
                    tup = TupleLiteral(r, [])
                    indices.append(tup)
                return Subscript(base, indices)
            return Subscript(base, [build_expr(ctx, expr.slice)])
        else:  # Ellipsis (can only happen in Python 2)
            raise NotSupportedError(base.range(), "ellipsis is not supported")

    @staticmethod
    def build_List(ctx, expr):
        return ListLiteral(ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 1),
                           [build_expr(ctx, e) for e in expr.elts])

    @staticmethod
    def build_Tuple(ctx, expr):
        return TupleLiteral(ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 1),
                            [build_expr(ctx, e) for e in expr.elts])

    @staticmethod
    def build_Dict(ctx, expr):
        range = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 1)
        if expr.keys and not expr.keys[0]:
            raise NotSupportedError(range, "Dict expansion (e.g. `{**dict}`) is not supported")
        return DictLiteral(range, [build_expr(ctx, e) for e in expr.keys],
                           [build_expr(ctx, e) for e in expr.values])

    @staticmethod
    def build_Num(ctx, expr):
        value = str(expr.n)
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(value))
        return Const(r, value)

    @staticmethod
    def build_Constant(ctx, expr):
        value = expr.value
        if value is None or isinstance(value, bool):
            # NB: this check has to happen before the int check because bool is
            # a subclass of int
            return ExprBuilder.build_NameConstant(ctx, expr)
        if isinstance(value, (int, float, complex)):
            return ExprBuilder.build_Num(ctx, expr)
        elif isinstance(value, str):
            return ExprBuilder.build_Str(ctx, expr)
        elif isinstance(value, type(Ellipsis)):
            return ExprBuilder.build_Ellipsis(ctx, expr)
        else:
            error_range = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(str(value)))
            raise FrontendError(error_range, "Unknown Constant expression type")

    @staticmethod
    def build_Str(ctx, expr):
        value = str(expr.s)
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + len(value) + 1)
        return StringLiteral(r, value)

    @staticmethod
    def build_JoinedStr(ctx, expr):
        s = ''
        args = []
        for value in expr.values:
            r = ctx.make_range(value.lineno, value.col_offset, value.col_offset + 1)
            if isinstance(value, ast.FormattedValue):
                if value.conversion != -1:
                    raise NotSupportedError(r, 'Don\'t support conversion in JoinedStr')
                if value.format_spec is not None:
                    raise NotSupportedError(r, 'Don\'t support formatting in JoinedStr')
                s += '{}'
                args.append(build_expr(ctx, value.value))
            elif isinstance(value, ast.Str):
                s += value.s
            else:
                raise NotSupportedError(r, 'Unsupported value in JoinedStr')

        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 1)
        return Apply(Select(StringLiteral(r, s), Ident(r, 'format')), args, [])

    @staticmethod
    def build_ListComp(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset)
        if (len(stmt.generators) != 1):
            raise NotSupportedError(r, "Only a single generator is currently supported")

        if (len(stmt.generators[0].ifs) != 0):
            raise NotSupportedError(r, "Comprehension ifs are not supported yet")

        elt_expr = build_expr(ctx, stmt.elt)
        target_expr = build_expr(ctx, stmt.generators[0].target)
        iter_expr = build_expr(ctx, stmt.generators[0].iter)

        return ListComp(r, elt_expr, target_expr, iter_expr)

    @staticmethod
    def build_DictComp(ctx, stmt):
        r = ctx.make_range(stmt.lineno, stmt.col_offset, stmt.col_offset)
        if (len(stmt.generators) != 1):
            raise NotSupportedError(r, "Only a single generator is currently supported")

        if (len(stmt.generators[0].ifs) != 0):
            raise NotSupportedError(r, "Comprehension ifs are not supported yet")

        key_expr = build_expr(ctx, stmt.key)
        value_expr = build_expr(ctx, stmt.value)
        target_expr = build_expr(ctx, stmt.generators[0].target)
        iter_expr = build_expr(ctx, stmt.generators[0].iter)

        return DictComp(r, key_expr, value_expr, target_expr, iter_expr)

    @staticmethod
    def build_Starred(ctx, expr):
        r = ctx.make_range(expr.lineno, expr.col_offset, expr.col_offset + 1)
        return Starred(r, build_expr(ctx, expr.value))

build_expr = ExprBuilder()
build_stmt = StmtBuilder()
build_withitem = WithItemBuilder()

def find_before(ctx, pos, substr, offsets=(0, 0)):
    new_pos = ctx.source[:pos].rindex(substr)
    return ctx.make_raw_range(new_pos + offsets[0], new_pos + len(substr) + offsets[1])
